This paper describes a system for on-line adjustment of the cutting conditions in a turning operation. Cutting conditions are set based on an adaptive model of the cutting operation taking into consideration the gradual wear of the tool. The objective is to control the rough turning operation for a predetermined tool life under varying cutting conditions. Two case studies show the feasibility of the proposed methodology.
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